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  • Saint Petersburg, Russia
  • 08:10 (UTC +03:00)

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andrewha/README.md

๐Ÿš€ About Me

Hi, I'm Andrei (Andrew), a Data Scientist with a versatile background in engineering and analytics roles. I have applied my expertise across diverse industries, including:

  • ๐Ÿ“ถTelecommunications: Developed tools for mobile traffic planning, optimization, and prediction.
  • ๐Ÿ–ง Networking: Implemented solutions for software defect classification and syslog clustering.
  • ๐Ÿ’ณ Consumer Banking: Built predictive models for loan default probability, improving risk management.
  • ๐Ÿ’ฑ High-Frequency Trading (HFT): Briefly explored trading strategy development for financial markets.

I hold a Master's degree in Data Science and an Engineer's Degree in Telecommunications. Currently, I am:


๐Ÿ› ๏ธ Tech Stack

Languages & OS Libraries Tools IDE, Project & Docs Management
Python NumPy Jupyter Notebook Jira
C++ Pandas FastAPI Confluence
Bash Script scikit-learn Git Doxygen
Go SciPy Docker Visual Studio Code
Windows Matplotlib Apache Spark LaTeX
Linux PyTorch DBeaver Microsoft Office

๐Ÿ“‚ Projects

  1. Wheat Futures Monthly Price Forecasting
    Description: Time series point and interval forecasting as applied to wheat futures monthly prices.
    Stack: Python, SARIMAX.

  2. Classical Machine Learning Algorithms Library
    Description: Linear, Logistic, and Autoregression models.
    Stack: C++, Boost, Armadillo.

  3. Local Weighted (LOWESS) Regression Filter
    Description: One-dimensional LOWESS regression model.
    Stack: C++, Python, pybind11.

  4. European Vanilla Options
    Description: Call and put options pricing.
    Stack: C++, Python.


๐ŸŒ Connect

  • I occasionally post and comment on
    Medium.

  • Sometimes, I visit
    Kaggle.


๐ŸŽ“ Data Science Master's Thesis

  • Topic: Electricity Spot Prices Forecasting Using Stochastic Volatility Models
  • Presentation:
    ResearchGate.
  • Full Text:
    arXiv.

Pinned Loading

  1. mds2022 mds2022 Public archive

    Master of Data Science Academic Research and Project Materials

    Jupyter Notebook 3

  2. lowess_regression lowess_regression Public

    Locally weighted scatterplot smoothing regression model

  3. fastapidemo fastapidemo Public

    Demo web app developed with FastAPI

    Python

  4. european_vanilla_options european_vanilla_options Public

    European vanilla call and put options

    HTML

  5. ezml ezml Public

    EasyML library

    C++

  6. wheat_price_forecast wheat_price_forecast Public

    HTML 1